Ground Reaction Inertial Poser: Physics-based Human Motion Capture from Sparse IMUs and Insole Pressure Sensors
arXiv cs.CV / 3/18/2026
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Key Points
- GRIP is a method that reconstructs physically plausible human motion from four wearable devices by fusing IMU signals with foot pressure data to capture ground interactions.
- It uses a digital twin approach, employing a synthetic humanoid in a physics simulator to ensure realistic motion, rather than relying solely on kinematics.
- The architecture comprises KinematicsNet, which estimates poses and velocities from sensor data, and DynamicsNet, which controls the humanoid in the simulator using the residual between KinematicsNet predictions and the simulated state.
- A new dataset, PRISM, provides synchronized IMUs and insole pressure measurements to enable robust training and fair evaluation, with GRIP outperforming IMU-only and IMU-pressure fusion methods on pose accuracy and physical consistency.
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